End-to-end neural NLP architectures are notoriously difficult to understand, which gives rise to numerous efforts towards model explainability in recent years. An essential principle of model explanation is Faithfulness, i.e., an explanation should accurately represent the reasoning process behind the model's prediction. This survey first discusses the definition and evaluation of Faithfulness, as well as its significance for explainability. We then introduce the recent advances in faithful explanation by grouping approaches into five categories: similarity methods, analysis of model-internal structures, backpropagation-based methods, counterfactual intervention, and self-explanatory models. Each category will be illustrated with its repres...
Can we preserve the accuracy of neural models while also providing faithful explanations? We present...
As the demand for explainable deep learning grows in the evaluation of language technologies, the va...
As the demand for explainable deep learning grows in the evaluation of language technologies, the va...
This thesis focuses on model interpretability, an area concerned with under- standing model predicti...
Neural networks for NLP are becoming increasingly complex and widespread, and there is a growing con...
Deep Neural Networks such as Recurrent Neural Networks and Transformer models are widely adopted for...
In the past decade, natural language processing (NLP) systems have come to be built almost exclusive...
Deep neural networks (DNNs) can perform impressively in many natural language processing (NLP) tasks...
Self-explainable deep neural networks are a recent class of models that can output ante-hoc local ex...
© 2018 Curran Associates Inc.All rights reserved. Most recent work on interpretability of complex ma...
© 2018 Curran Associates Inc.All rights reserved. Most recent work on interpretability of complex ma...
As the use of deep learning techniques has grown across various fields over the past decade, complai...
This paper argues that there are two different types of causes that we can wish to understand when w...
As the applications of Natural Language Processing (NLP) in sensitive areas like Political Profiling...
This paper argues that there are two different types of causes that we can wish to understand when w...
Can we preserve the accuracy of neural models while also providing faithful explanations? We present...
As the demand for explainable deep learning grows in the evaluation of language technologies, the va...
As the demand for explainable deep learning grows in the evaluation of language technologies, the va...
This thesis focuses on model interpretability, an area concerned with under- standing model predicti...
Neural networks for NLP are becoming increasingly complex and widespread, and there is a growing con...
Deep Neural Networks such as Recurrent Neural Networks and Transformer models are widely adopted for...
In the past decade, natural language processing (NLP) systems have come to be built almost exclusive...
Deep neural networks (DNNs) can perform impressively in many natural language processing (NLP) tasks...
Self-explainable deep neural networks are a recent class of models that can output ante-hoc local ex...
© 2018 Curran Associates Inc.All rights reserved. Most recent work on interpretability of complex ma...
© 2018 Curran Associates Inc.All rights reserved. Most recent work on interpretability of complex ma...
As the use of deep learning techniques has grown across various fields over the past decade, complai...
This paper argues that there are two different types of causes that we can wish to understand when w...
As the applications of Natural Language Processing (NLP) in sensitive areas like Political Profiling...
This paper argues that there are two different types of causes that we can wish to understand when w...
Can we preserve the accuracy of neural models while also providing faithful explanations? We present...
As the demand for explainable deep learning grows in the evaluation of language technologies, the va...
As the demand for explainable deep learning grows in the evaluation of language technologies, the va...